Subterranean burrowing is inherently difficult for robots because of the high
forces experienced as well as the high amount of uncertainty in this domain.
Because of the difficulty in modeling forces in granular media, we propose the
use of a novel machine-learning control strategy to obtain optimal techniques
for vertical self-burrowing. In this paper, we realize a snake-like
bio-inspired robot that is equipped with an IMU and two triple-axis
magnetometers. Utilizing magnetic field strength as an analog for depth, a
novel deep learning architecture was proposed based on sinusoidal and random
data in order to obtain a more efficient strategy for vertical self-burrowing.
This strategy was able to outperform many other standard burrowing techniques
and was able to automatically reach targeted burrowing depths. We hope these
results will serve as a proof of concept for how optimization can be used to
unlock the secrets of navigating in the subterranean world more efficiently